masterThesis
Modelo de programación de operaciones en una mina a cielo abierto: aplicación en organización corona
Fecha
2019-07-24Registro en:
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273574
TE10291
Autor
Solano Charris, Elyn Lizeth
Institución
Resumen
Las empresas desarrollan estrategias que requieren un gran esfuerzo, para la optimización de recursos, por este motivo la programación de operaciones se convierte en un foco de mejora, como es el caso en la Organización Corona. Este proyecto busca proponer un modelo para la programación de operaciones mineras a cielo abierto, con el fin de mejorar la eficiencia de la utilización de los equipos de minería, enfocándose en la reducción de costos de utilización de equipos, en la división de insumos industriales de la organización Corona. Para esto, se plantea realizar un diagnóstico que permita generar oportunidades de mejora. Después, se busca analizar diferentes escenarios por medio del planteamiento de modelos matemáticos. Por último, se valida el comportamiento del modelo propuesto.